Frontline nurses’ willingness to work during the COVID-19 pandemic: A mixed-methods study

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Abstract

Aim: Frontline nurses’ willingness to work has significant implications for maintaining workforce stability and quality of care during the COVID-19 pandemic; however, few studies have investigated their willingness and the corresponding reasons. This study aims to examine frontline nurses’ willingness to work, identify its predictors and explore its corresponding reasons. Design: A mixed-methods design was conducted. Methods: Based on a multilevel behavioural-diagnostic model, a questionnaire survey was used to collect quantitative and qualitative data concurrently from 13 February to 24 February 2020 to explore frontline nurses’ willingness to work and the corresponding reasons in two hospitals in Wuhan, China. One was a designated hospital which only received COVID-19 patients, and the other was built up temporarily for COVID-19 patients. Results: Of the 2014 participants, most (n = 1950, 96.8%) indicated their willingness to work, and a few (n = 64, 3.2%) expressed their unwillingness. Binary logistic regression analysis identified five predictors of participants’ willingness to work, including monthly family income, average working hours per shift, belief in their colleagues’ preparedness, belief in their hospitals’ preparedness and levels of depression. These indicators explained 27% of the variance (p

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APA

Ke, Q., Chan, S. W. chi, Kong, Y., Fu, J., Li, W., Shen, Q., & Zhu, J. (2021). Frontline nurses’ willingness to work during the COVID-19 pandemic: A mixed-methods study. Journal of Advanced Nursing, 77(9), 3880–3893. https://doi.org/10.1111/jan.14989

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